| Campesato O. Angular and Deep Learning Pocket Primer 2021.pdf | 22.11 MB | ||
| Campesato O. Bash for Data Scientists 2022.pdf | 5.87 MB | ||
| Campesato O. Data Literacy With Python 2023.pdf | 14.58 MB | ||
| Campesato O. Data Science Fundamentals Pocket Primer 2021.pdf | 5.72 MB | ||
| Campesato O. Data Structures in Java 2023.pdf | 10.81 MB | ||
| Campesato O. Data Wrangling Using Pandas, SQL, and Java 2022.pdf | 13.03 MB | ||
| Campesato O. Intermediate Python 2023.pdf | 6.79 MB | ||
| Campesato O. Java for Developers. Pocket Primer 2022.pdf | 12.47 MB | ||
| Campesato O. Linux Shell Programming. Pocket Primer 2023.pdf | 2 MB | ||
| Campesato O. Managing Datasets and Models 2023.pdf | 9.38 MB | ||
| Campesato O. Natural Language Processing Fundamentals for Developers 2021.pdf | 21.09 MB | ||
| Campesato O. Natural Language Processing...for Developers 2021.pdf | 5.57 MB | ||
| Campesato O. Pandas Basics 2023.pdf | 3.15 MB | ||
| Campesato O. Python 3 and Data Visualization 2023.pdf | 8.2 MB | ||
| Campesato O. Python Data Structures. Pocket Primer 2023.pdf | 4.46 MB | ||
| Campesato O. Python Tools for Data Scientists. Pocket Primer 2022.pdf | 9.62 MB | ||
| Campesato O. Python for Absolute Beginners 2023.pdf | 7.68 MB | ||
| Campesato O. Python for Programmers 2022.pdf | 8.99 MB | ||
| Campesato O. SQL Pocket Primer 2022.pdf | 20.44 MB | ||
| Campesato O. Working with grep, sed, AND awk 2023.pdf | 5.92 MB | ||
| ▲ 20 total files | |||
Textbook in PDF format
The purpose of this book is to usher readers into the world of data, ensuring a comprehensive understanding of its nuances, intricacies, and complexities. With Python 3 as the primary medium, the book underscores the pivotal role of data in modern industries, and how its adept management can lead to insightful decision-making. The book provides a quick introduction to foundational data-related tasks, priming the readers for more advanced concepts of model training introduced later on. Through detailed, step-by-step Python code examples, the reader will master training models, beginning with the kNN algorithm, and then smoothly transitioning to other classifiers, by tweaking mere lines of code. Tools like Sweetviz, Skimpy, Matplotlib, and Seaborn are introduced, offering readers a hands-on experience in rendering charts and graphs. Companion files with source code and data sets are available by writing to the publisher.
FEATURES:
- Introduces tools like Sweetviz, Skimpy, Matplotlib, and Seaborn offering readers a hands-on experience in rendering charts and graphs
- Companion files with numerous Python code samples
| torrent name | size | uploader | age | seed | leech |
|---|---|---|---|---|---|
| 11.19 MB | andryold1 | 2 months | 0 | 0 | |
| 5.75 MB | andryold1 | 1 year | 11 | 0 | |
| 8.46 MB | andryold1 | 1 year | 12 | 0 | |
|
Campesato O.Large Language Models for Developers.A Prompt-based Exploration 2024 Posted by
andryold1 in Books
> Ebooks
|
10.62 MB | andryold1 | 1 year | 10 | 2 |
| 13.11 MB | andryold1 | 1 year | 17 | 1 |
All Comments